What statement best describes the diffusion models in generative AI?
A.
Diffusion models are probabilistic generative models that progressively inject noise into data, then learn to reverse this process for sample generation.
B.
Diffusion models are discriminative models that use gradient-based optimization algorithms to classify data points.
C.
Diffusion models are unsupervised models that use clustering algorithms to group similar data points together.
D.
Diffusion models are generative models that use a transformer architecture to learn the underlying probability distribution of the data.
The Answer Is:
A
This question includes an explanation.
Explanation:
Diffusion models, as discussed in NVIDIA’s Generative AI and LLMs course, are probabilistic generative models that operate by progressively adding noise to data in a forward process and then learning to reverse this process to generate new samples. This involves a Markov chain that gradually corrupts data with noise and a reverse process that denoises it to reconstruct realistic samples, making them powerful for generating high-quality images, text, and other data. Unlike Transformer-based models, diffusion models rely on this iterative denoising mechanism. Option B is incorrect, as diffusion models are generative, not discriminative, and focus on data generation, not classification. Option C is wrong, as diffusion models do not use clustering algorithms but focus on generative tasks. Option D is inaccurate, as diffusion models do not inherently rely on Transformer architectures but use distinct denoising processes. The course states: "Diffusion models are probabilistic generative models that add noise to data and learn to reverse the process for sample generation, widely used in generative AI tasks."
[References: NVIDIA Building Transformer-Based Natural Language Processing Applications course; NVIDIA Introduction to Transformer-Based Natural Language Processing., ]
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